Assessing the transportability of radiomic models for lung cancer diagnosis: commercial vs. open-source feature extractors.

IF 4 2区 医学 Q2 ONCOLOGY
Translational lung cancer research Pub Date : 2024-08-31 Epub Date: 2024-08-26 DOI:10.21037/tlcr-24-281
David Xiao, Michael N Kammer, Heidi Chen, Palina Woodhouse, Kim L Sandler, Anna E Baron, David O Wilson, Ehab Billatos, Jiantao Pu, Fabien Maldonado, Stephen A Deppen, Eric L Grogan
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引用次数: 0

Abstract

Background: Radiomics has shown promise in improving malignancy risk stratification of indeterminate pulmonary nodules (IPNs) with many platforms available, but with no head-to-head comparisons. This study aimed to evaluate transportability of radiomic models across platforms by comparing performances of a commercial radiomic feature extractor (HealthMyne) with an open-source extractor (PyRadiomics) on diagnosis of lung cancer in IPNs.

Methods: A commercial radiomic feature extractor was used to segment IPNs from computed tomography (CT) scans, and a previously validated radiomic model based on commercial features was used as baseline (ComRad). Using same segmentation masks, PyRadiomics, an open-source feature extractor was used to build three open-source radiomic models (OpenRad) using different methods: de novo open-source model derived using least absolute shrinkage and selection operator (LASSO) for feature selection, selecting open-source features matched to ComRad features based upon Imaging Biomarker Standardization Initiative (IBSI) nomenclature, and selecting open-source features most highly correlated to ComRad features. Radiomic models were trained on an internal cohort (n=161) and externally validated on 3 cohorts (n=278). We added Mayo clinical risk score to OpenRad and ComRad models, creating integrated clinical radiomic (ClinRad) models. All models were compared using area under the curve (AUC) and evaluated for clinical improvement using bias-corrected clinical net reclassification indices (cNRIs).

Results: ComRad AUC was 0.76 [95% confidence interval (CI): 0.71-0.82], and OpenRad AUC was 0.75 (95% CI: 0.69-0.81) for LASSO model, 0.74 (95% CI: 0.68-0.79) for Spearman's correlation, and 0.71 (95% CI: 0.65-0.77) for IBSI. Mayo scores were added to OpenRad LASSO model, which performed best, forming open-source ClinRad model with AUC of 0.80 (95% CI: 0.74-0.86), identical to commercial ClinRad's AUC. Both ClinRad models showed clinical improvement compared to Mayo alone, with commercial ClinRad achieving cNRI of 0.09 (95% CI: 0.02-0.15) for benign and 0.07 (95% CI: 0.00-0.13) for malignant, and open-source ClinRad achieving cNRI of 0.09 (95% CI: 0.02-0.15) for benign and 0.06 (95% CI: 0.00-0.12) for malignant.

Conclusions: Transportability of radiomic models across platforms directly does not conserve performance, but radiomic platforms can provide equivalent results when building de novo models allowing for flexibility in feature selection to maximize prediction accuracy.

评估用于肺癌诊断的放射学模型的可移植性:商业与开源特征提取器的对比。
背景:放射组学有望改善不确定肺结节(IPN)的恶性肿瘤风险分层,目前有许多平台可供选择,但没有头对头的比较。本研究旨在通过比较商用放射组学特征提取器(HealthMyne)和开源提取器(PyRadiomics)在诊断IPNs肺癌方面的性能,评估放射组学模型在不同平台间的可移植性:方法:使用商业放射体特征提取器从计算机断层扫描(CT)扫描图像中分割 IPN,并以先前基于商业特征验证的放射体模型(ComRad)为基线。使用相同的分割掩膜,PyRadiomics(一种开源特征提取器)采用不同的方法建立了三种开源放射线组学模型(OpenRad):使用最小绝对收缩和选择算子(LASSO)进行特征选择,获得全新的开源模型;根据成像生物标记物标准化倡议(IBSI)术语选择与 ComRad 特征匹配的开源特征;以及选择与 ComRad 特征关联度最高的开源特征。放射组学模型在内部队列(161 人)中进行了训练,并在 3 个队列(278 人)中进行了外部验证。我们将梅奥临床风险评分添加到 OpenRad 和 ComRad 模型中,创建了综合临床放射组学(ClinRad)模型。所有模型均使用曲线下面积(AUC)进行比较,并使用偏差校正临床净重分类指数(cNRIs)评估临床改善情况:ComRad 的 AUC 为 0.76 [95% 置信区间 (CI):0.71-0.82],OpenRad 的 LASSO 模型 AUC 为 0.75 (95% CI:0.69-0.81),斯皮尔曼相关性为 0.74 (95% CI:0.68-0.79),IBSI 为 0.71 (95% CI:0.65-0.77)。梅奥评分被添加到 OpenRad LASSO 模型中,后者表现最佳,形成了 AUC 为 0.80(95% CI:0.74-0.86)的开源 ClinRad 模型,与商业 ClinRad 的 AUC 相同。与单独使用梅奥相比,两种 ClinRad 模型都显示出临床改善效果,商业 ClinRad 的良性 cNRI 为 0.09(95% CI:0.02-0.15),恶性为 0.07(95% CI:0.00-0.13);开源 ClinRad 的良性 cNRI 为 0.09(95% CI:0.02-0.15),恶性为 0.06(95% CI:0.00-0.12):结论:在不同平台间移植放射线组学模型并不能直接保持性能,但放射线组学平台在建立全新模型时可以提供相同的结果,从而可以灵活选择特征,最大限度地提高预测准确性。
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来源期刊
CiteScore
7.20
自引率
2.50%
发文量
137
期刊介绍: Translational Lung Cancer Research(TLCR, Transl Lung Cancer Res, Print ISSN 2218-6751; Online ISSN 2226-4477) is an international, peer-reviewed, open-access journal, which was founded in March 2012. TLCR is indexed by PubMed/PubMed Central and the Chemical Abstracts Service (CAS) Databases. It is published quarterly the first year, and published bimonthly since February 2013. It provides practical up-to-date information on prevention, early detection, diagnosis, and treatment of lung cancer. Specific areas of its interest include, but not limited to, multimodality therapy, markers, imaging, tumor biology, pathology, chemoprevention, and technical advances related to lung cancer.
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